Maximizing Expected Utility for Stochastic Combinatorial Optimization Problems

J. Li, A. Deshpande
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引用次数: 26

Abstract

We study the stochastic versions of a broad class of combinatorial problems where the weights of the elements in the input dataset are uncertain. The class of problems that we study includes shortest paths, minimum weight spanning trees, and minimum weight matchings over probabilistic graphs, and other combinatorial problems like knapsack. We observe that the expected value is inadequate in capturing different types of {\em risk-averse} or {\em risk-prone} behaviors, and instead we consider a more general objective which is to maximize the {\em expected utility} of the solution for some given utility function, rather than the expected weight (expected weight becomes a special case). We show that we can obtain a polynomial time approximation algorithm with {\em additive error} $\epsilon$ for any $\epsilon>0$, if there is a pseudopolynomial time algorithm for the {\em exact} version of the problem (This is true for the problems mentioned above)and the maximum value of the utility function is bounded by a constant. Our result generalizes several prior results on stochastic shortest path, stochastic spanning tree, and stochastic knapsack. Our algorithm for utility maximization makes use of the separability of exponential utility and a technique to decompose a general utility function into exponential utility functions, which may be useful in other stochastic optimization problems.
随机组合优化问题的期望效用最大化
我们研究了一大类组合问题的随机版本,其中输入数据集中元素的权重是不确定的。我们研究的一类问题包括最短路径、最小权值生成树、概率图上的最小权值匹配以及其他组合问题,如背包问题。我们观察到期望值不足以捕获不同类型的{\em风险厌恶}或{\em风险倾向}行为,相反,我们考虑一个更一般的目标,即最大化某些给定效用函数的解决方案的{\em期望效用},而不是期望权重(期望权重成为特殊情况)。我们证明,对于任何$\epsilon>0$,如果有一个伪多项式时间算法用于问题的{\em精确}版本(这对于上面提到的问题是正确的),并且效用函数的最大值有一个常数的边界,我们可以获得一个具有{\em加性误差}$\epsilon$的多项式时间近似算法。我们的结果推广了之前关于随机最短路径、随机生成树和随机背包的一些结果。该算法利用了指数效用的可分性和将一般效用函数分解为指数效用函数的技术,可用于其他随机优化问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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